Abstract
Breast cancer is a leading cause of death in women due to cancer. According to WHO in 2018, it is estimated that 627.000 women died from breast cancer, that is approximately 15 % of all cancer deaths among women [3]. Early detection is a very important factor to reduce mortality by 25-30 %. Mammography is the most commonly used technique in detecting breast cancer using a low-dose X-ray system in the examination of breast tissue that can reduce false positives. A Computer-Aided Detection (CAD) system has been developed to effectively assist radiologists in detecting masses on mammograms that indicate the presence of breast tumors. The type of abnormality in mammogram images can be seen from the presence of microcalcifications and the presence of mass lesions. In this research, a new approach was developed to improve the performance of CAD System for classifying benign and malignant tumors. Areas suspected of being masses (RoI) in mammogram images were detected using an adaptive thresholding method and mathematical morphological operations. Wavelet decomposition is performed on the Region of Interest (RoI) and the feature extraction process is performed using a GLCM method with 4 statistical features, namely, contrast, correlation, entropy, and homogeneity. Classification of benign and malignant tumors using the MIAS database provided an accuracy of 95.83 % with a sensitivity of 95.23 % and a specificity of 96.49 %. A comparison with other methods illustrates that the proposed method provides better performance.
Highlights
Breast cancer is a leading cause of death in women due to cancer
We developed benign and malignant breast tumors classification on mammograms based on texture analysis and backpropagation neural network classifier
We propose a feature extraction method by combining 2D-Discrete Wavelet Transform (DWT) and GLCM methods using 4 statistical features namely contrast, correlation, entropy, and homogeneity to improve performance in the classification of benign and malignant tumors
Summary
Breast cancer is a leading cause of death in women due to cancer. Every year more than 250.000 new cases of breast cancer are diagnosed in Europe and approximately 175.000 in the United States. Areas suspected of being masses (RoI) in mammogram images were detected using the adaptive thresholding method and mathematical morphological operation. The initial RoI results (obtained from the adaptive thresholding process) are used as image input in the mathematical morphological operation stage. Benign and malignant tumors in HH subband has the same contrast value of 1, which indicates the size of the presence of variations in gray pixel image is high. The energy and homogeneity features on LL subband in benign tumors have an average value greater than that of malignant tumors It means that benign tumor has a pixel value that is similar to other pixels and has a high uniformity of gray intensity in the image. Iteration of the two processes is continuously carried out on all training datasets until the conditions are met
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